Inverse design for materials discovery from the multidimensional electronic density of states

Authors
Bang, KihoonKim, JeongraeHong, DoosunKim, DonghunHan, Sang Soo
Issue Date
2024-03
Publisher
Royal Society of Chemistry
Citation
Journal of Materials Chemistry A, v.12, no.10, pp.6004 - 6013
Abstract
To accelerate materials discovery, an inverse design scheme to find materials with desired properties has been recently introduced. Despite successful efforts, previous inverse design methods have focused on problems in which the desired properties are described by a single number (one-dimensional vector), such as the formation energy and bandgap. The limitation becomes apparent when dealing with material properties that require representation with multidimensional vectors, such as the electronic density of states (DOS) pattern. Here, we develop a deep learning method for inverse design from multidimensional DOS properties. In particular, we introduce a composition vector (CV) to describe the composition of predicted materials, which serves as an invertible representation for the DOS pattern. Our inverse design model exhibits exceptional prediction performance, with a composition accuracy of 99% and a DOS pattern accuracy of 85%, greatly surpassing the capabilities of existing CVs. Furthermore, we have successfully applied the inverse design model to find promising candidates for catalysis and hydrogen storage. Notably, our model suggests a hydrogen storage material, Mo3Co, that has not yet been reported. This readily reveals that our model can greatly expand the space of inverse design for materials discovery. To accelerate materials discovery, a deep learning method for inverse design of inorganic materials using multidimensional DOS properties was developed.
Keywords
OXYGEN REDUCTION REACTION; ENHANCED ACTIVITY; ELECTROCATALYSTS; COMBINATORIAL
ISSN
2050-7488
URI
https://pubs.kist.re.kr/handle/201004/149294
DOI
10.1039/d3ta06491c
Appears in Collections:
KIST Article > 2024
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